AI-Powered Precision Medicine: Transforming Healthcare through Intelligent Imaging and Surgical Ecosystem Innovation

Authors

  • Chunlei Wang Shaoxing Maternity and Child Health Care Hospital, Shaoxing, Zhejiang, China Author
  • Jie Cao Shaoxing Maternity and Child Health Care Hospital, Shaoxing, Zhejiang, China Author
  • Manzhi Xia Shaoxing Maternity and Child Health Care Hospital, Shaoxing, Zhejiang, China Author
  • Jianying Kang Shaoxing Maternity and Child Health Care Hospital, Shaoxing, Zhejiang, China Author
  • Jinlian Liang Shaoxing Maternity and Child Health Care Hospital, Shaoxing, Zhejiang, China Author

DOI:

https://doi.org/10.5281/zenodo.17018632

Keywords:

Artificial Intelligence, Precision Medicine, Medical Imaging, Surgical Innovation, Data Integration

Abstract

The integration of artificial intelligence (AI) into precision medicine has revolutionized healthcare by enhancing diagnostic accuracy, optimizing treatment strategies, and improving surgical outcomes. This paper explores the transformative potential of AI in precision medicine, with a focus on intelligent imaging analysis and surgical ecosystem innovation. AI-driven techniques, such as machine learning and deep learning, have demonstrated remarkable capabilities in analyzing medical images, enabling early and accurate disease detection, particularly in cancer and cardiovascular conditions. Additionally, AI has significantly advanced surgical precision through robotic-assisted procedures and augmented reality, reducing complications and improving patient recovery. The paper also highlights the integration of diverse data sources, including genomics and wearable sensors, to provide comprehensive patient insights. Despite these advancements, challenges such as ethical considerations, data privacy, and algorithmic bias remain critical barriers to widespread adoption. The paper concludes by emphasizing the need for interdisciplinary collaboration, robust validation, and regulatory oversight to fully realize the potential of AI in precision medicine. By addressing these challenges, AI-powered precision medicine holds immense promise for delivering personalized, efficient, and equitable healthcare solutions.

Downloads

Download data is not yet available.

References

Shohoni Mahabub, Bimol Chandra Das, Md Russel Hossain. 2024. Advancing healthcare transformation: AI-driven precision medicine and scalable innovations through data analytics. In Edelweiss Applied Science and Technology.

Yusheng Guo, Tianxiang Li, Bingxin Gong, Yan Hu, Sichen Wang, Lian Yang, Chuansheng Zheng. 2024. From Images to Genes: Radiogenomics Based on Artificial Intelligence to Achieve Non‐Invasive Precision Medicine in Cancer Patients. In Advancement of science.

Tong Wu, Yuting Wang, Xiaoli Cui, Peng Xue, Youlin Qiao. 2025. AI-Based Identification Method for Cervical Transformation Zone Within Digital Colposcopy: Development and Multicenter Validation Study.. In .

Suvarna U Patel, Pranita S. Jirvankar. 2024. AI in Healthcare – Precision Medicine and Diagnosis. In 2024 2nd DMIHER International Conference on Artificial Intelligence in Healthcare, Education and Industry (IDICAIEI).

Yuting Lee. 2024. Application of AI-Driven Medical Image Recognition in Precision Medicine and Healthcare. In Applied and Computational Engineering.

Ezgi Ağır. 2024. Advanced AI and Augmented Reality (AR) Integration in Medical and Surgical Practice. In Next Frontier For Life Sciences and AI.

Atique Ahmed, Khadija Shoukat, Muhammad Ahmad Muneeb, Doaa Abdo Othman All Qasem, Muhammad Adeel Shahzad, Laraib Ul Nissa, Rabia Amir, Muhammad Zubair, Muhammad Waqas Younas, Asad Ali. 2024. AI and Digital Twin Transforms in the Construction of Precision Medical Model: Healthcare Management in Smart Cities. In European Journal of Medical and Health Research.

Jaswinder Singh, Gaurav Dhiman. 2025. A Survey on Artificial Intelligence in Precision Medicine and Healthcare Analysis for Neonatal Surgery. In Journal of Neonatal Surgery.

Carolina Larrain, Alejandro Torres-Hernandez, D. B. Hewitt. 2024. Artificial Intelligence, Machine Learning, and Deep Learning in the Diagnosis and Management of Hepatocellular Carcinoma. In Livers.

Narendra Rathod, Kriti Awasthi, Magdalena Kostkiewicz, Piotr Klimeczek, E. Stępień. 2024. Advancing Cardiac Detection in Chest X-ray Images Using Machine Learning: A Practical Application of AI in Medical Imaging. In Bio-Algorithms and Med-Systems.

Sayed Amir Mousavi Mobarakeh, K. Kazemi, A. Aarabi, H. Danyali. 2024. Empowering Medical Imaging with Artificial Intelligence: A Review of Machine Learning Approaches for the Detection, and Segmentation of COVID-19 Using Radiographic and Tomographic Images. In arXiv.org.

st Prudhvi, Sai Ganesh, Chakali Murthy, Gari Keerthi, Kiriti. 2024. HealthScan AI-Deep Learning-Based Multi-Disease Diagnosis from Medical Imaging. In IEEE International Symposium on Compound Semiconductors.

Lubomir M. Hadjiiski, Kenny H. Cha, H. Chan, K. Drukker, L. Morra, J. Näppi, B. Sahiner, H. Yoshida, Quan Chen, T. Deserno, H. Greenspan, H. Huisman, Z. Huo, R. Mazurchuk, N. Petrick, D. Regge, Ravi K. Samala, R. Summers, Kenji Suzuki, G. Tourassi, Daniel Vergara, S. Armato. 2022. AAPM task group report 273: Recommendations on best practices for AI and machine learning for computer-aided diagnosis in medical imaging.. In Medical Physics (Lancaster).

Chinedu Innocent Nwoye, Deepak Alapatt, Tong Yu, Armine Vardazaryan, Fangfang Xia, Zixuan Zhao, Tong Xia, Fucang Jia, Yuxuan Yang, Hao Wang, Derong Yu, Guoyan Zheng, Xiaotian Duan, Neil Getty, Ricardo Sanchez-Matilla, Maria Robu, Li Zhang, Huabin Chen, Jiacheng Wang, Liansheng Wang, Bokai Zhang, Beerend Gerats, Sista Raviteja, Rachana Sathish, Rong Tao, Satoshi Kondo, Winnie Pang, Hongliang Ren, Julian Ronald Abbing, Mohammad Hasan Sarhan, Sebastian Bodenstedt, Nithya Bhasker, Bruno Oliveira, Helena R. Torres, Li Ling, Finn Gaida, Tobias Czempiel, João L. Vilaça, Pedro Morais, Jaime Fonseca, Ruby Mae Egging, Inge Nicole Wijma, Chen Qian, Guibin Bian, Zhen Li, Velmurugan Balasubramanian, Debdoot Sheet, Imanol Luengo, Yuanbo Zhu, Shuai Ding, Jakob-Anton Aschenbrenner, Nicolas Elini van der Kar, Mengya Xu, Mobarakol Islam, Lalithkumar Seenivasan, Alexander Jenke, Danail Stoyanov, Didier Mutter, Pietro Mascagni, Barbara Seeliger, Cristians Gonzalez, Nicolas Padoy. 2022. CholecTriplet2021: A benchmark challenge for surgical action triplet recognition. In arXiv preprint.

Adam Zumla, Rizwan Ahmed, Kunal Bakhri. 2024. The role of artificial intelligence in the diagnosis, imaging, and treatment of thoracic empyema.. In Current opinion in pulmonary medicine.

Bilal Irfan. 2024. Beyond the Scope: Advancing Otolaryngology With Artificial Intelligence Integration. In Cureus.

Dae Young Lee, Hee Jo Yang. 2024. Artificial Intelligence for Autonomous Robotic Surgery in Urology: A Narrative Review. In Urogenital Tract Infection.

Claudio Carini, A. Seyhan. 2024. Tribulations and future opportunities for artificial intelligence in precision medicine. In Journal of Translational Medicine.

L. Daamen, I. Molenaar, Vincent P. Groot. 2023. Recent Advances and Future Challenges in Pancreatic Cancer Care: Early Detection, Liquid Biopsies, Precision Medicine and Artificial Intelligence. In Journal of Clinical Medicine.

Downloads

Published

2025-09-01

Data Availability Statement

The review article does not involve research data.

Funding Statement

Shaoxing Health and Wellness Science and Technology Program.(2023SKY051)

Issue

Section

Articles

How to Cite

wang, chunlei, Cao, J. ., Xia, M. ., Kang, J., & Liang, J. (2025). AI-Powered Precision Medicine: Transforming Healthcare through Intelligent Imaging and Surgical Ecosystem Innovation. Global Academic Frontiers, 3(3), 45-55. https://doi.org/10.5281/zenodo.17018632